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arxiv:2411.18350

TryOffDiff: Virtual-Try-Off via High-Fidelity Garment Reconstruction using Diffusion Models

Published on Nov 27
ยท Submitted by rizavelioglu on Nov 29
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Abstract

This paper introduces Virtual Try-Off (VTOFF), a novel task focused on generating standardized garment images from single photos of clothed individuals. Unlike traditional Virtual Try-On (VTON), which digitally dresses models, VTOFF aims to extract a canonical garment image, posing unique challenges in capturing garment shape, texture, and intricate patterns. This well-defined target makes VTOFF particularly effective for evaluating reconstruction fidelity in generative models. We present TryOffDiff, a model that adapts Stable Diffusion with SigLIP-based visual conditioning to ensure high fidelity and detail retention. Experiments on a modified VITON-HD dataset show that our approach outperforms baseline methods based on pose transfer and virtual try-on with fewer pre- and post-processing steps. Our analysis reveals that traditional image generation metrics inadequately assess reconstruction quality, prompting us to rely on DISTS for more accurate evaluation. Our results highlight the potential of VTOFF to enhance product imagery in e-commerce applications, advance generative model evaluation, and inspire future work on high-fidelity reconstruction. Demo, code, and models are available at: https://rizavelioglu.github.io/tryoffdiff/

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edited 27 days ago

teaser-reference_to_garment-combined.gif

TL;DR: While current Virtual Try-On (VTON) technologies focus on digitally dressing models, our novel Virtual Try-Off (VTOFF) task extracts canonical garment images from single photos. Using TryOffDiff, a Stable Diffusion-based model with SigLIP visual conditioning, we achieve high-fidelity garment reconstruction that advances e-commerce product imagery and generative model evaluation.

Differences between VTON and VTOFF:

Model architecture:

Paper author Paper submitter
โ€ข
edited 27 days ago

Code is not available (404 Error)... This is becoming a trend...

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Hi @neltherion , as stated in the previous comment, I am currently cleaning the repository and will release it next Friday, at the latest ๐Ÿค—

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Paper author Paper submitter

The code for TryOffDiff is now officially released! ๐Ÿค— ( @neltherion )
You can find all scripts for training, prediction, and evaluation included.
Check it out at: https://github.com/rizavelioglu/tryoffdiff/
PS: Scripts for ablation studies and baselines will also be available soon. Stay tuned!

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